Skip to content

Latest commit

 

History

History
35 lines (25 loc) · 1.31 KB

README.md

File metadata and controls

35 lines (25 loc) · 1.31 KB

Mastering Matplotlib

Jupyter notebooks for my matplotlib course from O'Reilly Media.

Setting Up Your Environment

All of the code for this course relies heavily on elements from the python scientific stack. Unlike most python packages, those used by the scientific community need to be compiled, for performance reasons, and as such, they can be a bit tricky to install. The company Continuum has effectively solved this problem for us though, by creating a new distribution of Python that comes with many of these tools already installed, and pre-complied versions of the rest are just a single terminal command away. For this reason, we’ll be using Anaconda as our python distribution for this course.

So, assuming you have Anaconda installed, you can simply run the conda env create command from the directory containing this file to create a new environment, called mpl, and install all of the packages you need.

% conda env create -f environment.yml

Once the create command finishes, you can activate the new environment by calling source activate mpl.

% source activate mpl

If everything worked correctly, you should now be able to run the code for this course with the following command:

% jupyter notebook